Digital manufacturing: key trend of the fourth industrial revolution
The main drivers of Industry 4.0 are big data, the emergence of algorithms to analyze this data, and advancements in software and hardware capabilities. Among demographic drivers, a strong push is coming from an aging workforce in countries such as China, but also in many developed countries.
Robeco Global Industrial Innovation Equities, like every other Trends fund, selects long-term growth trends driven by demographic, technological or regulatory changes. This strategy has benefited strongly from the ‘digitalizing production’ trend via investments in players that combine advanced manufacturing techniques with the Industrial Internet of Things (IIoT).
Digital manufacturing turns production into self-adapting systems with a shorter R&D cycle, raising quality and reducing costs. For example, Maserati has achieved a 50% reduction of time to market by implementing IIoT. Adidas is trialing two ‘speed factories’ that bring local production closer to local consumption through smart manufacturing and 3D printing; it has dramatically reduced time to market for a pair of sneakers from 12-18 months to only 30 days.
The global digital production trend is growing fast, and within it, the Industrial IoT – a network of platforms, connected devices and software – is growing the fastest. The Industrial IoT software market also has margins that are among the highest in the automated production universe.
EBIT margin by automation application
Source: Credit Suisse
Being able to capture and process visual information in real time is absolutely critical for ‘smart’ manufacturing. This is called machine vision – it transfers images to a computer and enables almost instant feedback into the process. “I personally like machine vision a lot. It adds vision to machines to perform online testing and checking. This means you can have this done at all stages along the production line much earlier in the process and not just at the end, when the product is already finished,” says Van Lent.
Machine vision relies on lighting instruments, lenses, image sensors and vision processing. Used in the automotive, pharmaceutical, printing, food, and other sectors, machine vision is now able to not only work as a replacement for human vision, but also to handle information invisible to the human eye. According to Credence Research, the machine vision market is expected to reach USD 15 bln by 2022 from the current level of USD 9 bln.
Marco van Lent
Digital manufacturing is currently still at an early stage.
Digital twins are virtual representations of physical products or processes that can be used to understand, predict and optimize their performance. It is yet another hot application of IIoT that research firm Gartner has put on its list of top 10 strategic technology trends for 2019.
Source: Siemens eAircraft
“Digital twins map the physical production process online; for example, for jet engines,” said Van Lent. “You don’t have to build test models directly, you can design and test them on the screen. Rolls Royce, for instance, stated that before ‘digital twins’, it would typically have damaged or destroyed several test engines. Now, it produces one core engine which has been operational in tests, with none destroyed.”
But you can also use digital twins in operation. “You can collect information from the jet engine when flying and feed it into the computer on the ground. This can run tests to see how the engine will react to, for example, an energy-saving solution. Then you send the data back to the airplane, and the pilot can adjust the engine’s settings,” explains Van Lent. The global digital twin market is expected to reach USD 36 bln by 2025 from the current level of USD 4 bln according to MarketsAndMarkets data.
Stages of the Gartner hype cycle
“Within the Trends Investing team we try to capture new trends early on. This has obvious risks attached to it, as, after the initial hype, technologies frequently fail to live up to people’s unrealistically high expectations,” says Van Lent. This is captured well by the so-called Gartner hype cycle. Expectations about a new technology will often lead to a ‘peak of inflated expectations’, after which a wave of ‘disillusionment’ sets in and the number of players drops. But once these technologies have overcome their teething troubles, some of them will take root and continue growing through the ‘slope-of-enlightenment’ phase on to the more stable ‘plateau of productivity’.
Various building blocks of Industry 4.0 are located at different stages of this hype cycle. Machine-learning technology is currently at the peak of expectations, while self-driving cars have entered the phase of ‘disillusionment’ already. At the same time, industrial robots have reached their plateau phase, with four manufacturers in the lead globally.
As for IIoT platforms, currently offered by around 500 companies, they are now just past the peak of the hype cycle. “The number of companies offering them will certainly drop, and it is difficult to pick the ultimate winner,” says Van Lent. “For this reason, at this stage of the hype cycle, you have to invest in a basket of names.”
It is important to note that there are no real pure-play companies offering these technologies. All companies in this market are developing and offering IIoT and other platforms on top of their existing businesses. “If they chose to stop their supply, their bread-and-butter business will continue. So the companies themselves will not disappear,” says Van Lent.